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Machine learning time-local generators of open quantum dynamics

Mazza, Paolo P; Zietlow, Dominik; Carollo, Federico; Andergassen, Sabine; Martius, Georg; Lesanovsky, Igor

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Authors

Paolo P Mazza

Dominik Zietlow

Federico Carollo

Sabine Andergassen

Georg Martius



Abstract

In the study of closed many-body quantum systems one is often interested in the evolution of a subset of degrees of freedom. On many occasions it is possible to approach the problem by performing an appropriate decomposition into a bath and a system. In the simplest case the evolution of the reduced state of the system is governed by a quantum master equation with a time-independent, i.e. Markovian, generator. Such evolution is typically emerging under the assumption of a weak coupling between the system and an infinitely large bath. Here, we are interested in understanding to which extent a neural network function approximator can predict open quantum dynamics-described by time-local generators-from an underlying unitary dynamics. We investigate this question using a class of spin models, which is inspired by recent experimental setups. We find that indeed time-local generators can be learned. In certain situations they are even time-independent and allow to extrapolate the dynamics to unseen times. This might be useful for situations in which experiments or numerical simulations do not allow to capture long-time dynamics and for exploring thermalization occurring in closed quantum systems.

Citation

Mazza, P. P., Zietlow, D., Carollo, F., Andergassen, S., Martius, G., & Lesanovsky, I. (2021). Machine learning time-local generators of open quantum dynamics. Physical Review Research, 3(2), Article 023084. https://doi.org/10.1103/physrevresearch.3.023084

Journal Article Type Article
Acceptance Date Mar 18, 2021
Online Publication Date Apr 30, 2021
Publication Date 2021-04
Deposit Date Mar 18, 2021
Publicly Available Date Mar 19, 2021
Journal Physical Review Research
Electronic ISSN 2643-1564
Publisher American Physical Society
Peer Reviewed Peer Reviewed
Volume 3
Issue 2
Article Number 023084
DOI https://doi.org/10.1103/physrevresearch.3.023084
Public URL https://nottingham-repository.worktribe.com/output/5401757
Publisher URL https://journals.aps.org/prresearch/abstract/10.1103/PhysRevResearch.3.023084

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